Biological Engineering Analysis of Vermicompost Based on Image Features and Machine Learning

Hongyan Wang, Ling Wang, Jiabin Liu, Ying Nie, Daqing Wang
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Abstract

Earthworm manure is a soil enhancement product that is homogeneous, permeable, ecological, and organic. It has a particle structure that is substantially greater than the soil’s surface area. Using a suitable quantity of earthworm fertilizer in the soil will improve the nutritional state of the soil surface, as well as the microbial control system and drainage capacity. Bioengineering earthworm dung is now a tough challenge, but picture quality evaluation can help enhance the organic fertilizer treatment process for earthworm manure. Researchers began researching appropriate assessment methods in order to assure the influence of earthworm excrement and to precisely and effectively measure changes in image quality. As a result, we must first determine the consistency qualities, extract the image's color and texture, and then create a comparable vector with 11 dimensions. Finally, we learn how to train the picture quality regression model using the mechanical learning (ML) approach. As a result, an effective and precise image quality evaluation system was created, and earthworm manure bioengineering was effectively applied.
基于图像特征和机器学习的蚯蚓堆肥生物工程分析
蚯蚓粪是一种具有均匀性、渗透性、生态性、有机性的增土产品。它的颗粒结构比土壤表面积大得多。在土壤中施用适量的蚯蚓肥,可以改善土壤表面的营养状况,改善土壤的微生物控制系统和排水能力。生物工程处理蚯蚓粪是一项艰巨的挑战,但图像质量评价可以帮助改进蚯蚓粪的有机肥处理工艺。为了保证蚯蚓粪便的影响,准确有效地测量图像质量的变化,研究人员开始研究合适的评估方法。因此,我们必须首先确定一致性质量,提取图像的颜色和纹理,然后创建一个具有11维的可比向量。最后,我们学习如何使用机械学习(ML)方法训练图像质量回归模型。建立了一套有效、精确的图像质量评价体系,为蚯蚓粪便生物工程的有效应用奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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